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Knowledge extraction from a mixed transfer function artificial neural network

conference contribution
posted on 2004-01-01, 00:00 authored by I Khan, Yakov Frayman, Saeid Nahavandi
One of the big problems with Artificial Neural Networks (ANN) is that their results are not intuitively clear. For example, if we use the traditional neurons, with a sigmoid activation function, we can approximate any function, including linear functions, but the coefficients (weights) in this approximation will be rather meaningless. To resolve this problem, this paper presents a novel kind of ANN with different transfer functions mixed together. The aim of such a network is to i) obtain a better generalization than current networks ii) to obtain knowledge from the networks without a sophisticated knowledge extraction algorithm iii) to increase the understanding and acceptance of ANNs. Transfer Complexity Ratio is defined to make a sense of the weights associated with the network. The paper begins with a review of the knowledge extraction from ANNs and then presents a Mixed Transfer Function Artificial Neural Network (MTFANN). A MTFANN contains different transfer functions mixed together rather than mono-transfer functions. This mixed presence has helped to obtain high level knowledge and similar generalization comparatively to monotransfer function nets in a global optimization context.

History

Title of proceedings

InTech'04 : Proceedings of the 5th International Conference on Intelligent Technologies

Event

International Conference on Intelligent Technologies (5th : 2004 : Houston, Texas)

Pagination

1 - 6

Publisher

University of Houston-Downtown

Location

Houston, Texas

Place of publication

Houston, Tx

Start date

2004-12-02

End date

2004-12-04

Language

eng

Publication classification

E1 Full written paper - refereed

Editor/Contributor(s)

R Alo

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